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Optimal Task Offloading and Resource Allocation in Software-Defined Vehicular Edge Computing

机译:软件定义的车辆边缘计算中的最佳任务分载和资源分配

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In vehicular edge computing (VEC), resource-intensive tasks are offloaded to computing nodes at the network edge. Owing to high mobility and distributed nature, optimal task offloading in vehicular environments is still a challenging problem. In this paper, we first introduce a software-defined vehicular edge computing (SD-VEC) architecture where a controller not only guides the vehicles' task offloading strategy but also determines the edge cloud resource allocation strategy. To obtain the optimal strategies, we formulate a problem on the edge cloud selection and resource allocation to maximize the probability that a task is successfully completed within a pre-specified time limit. Since the formulated problem is a well-known NP-hard problem, we devise a mobility-aware greedy algorithm (MGA) that determines the amount of edge cloud resources allocated to each vehicle. Trace-driven simulation results demonstrate that MGA provides near-optimal performance and improves the successful task execution probability compared with conventional algorithms.
机译:在车辆边缘计算(VEC)中,资源密集型任务被卸载到网络边缘的计算节点。由于高机动性和分布式性质,在车辆环境中的最佳任务卸载仍然是一个具有挑战性的问题。在本文中,我们首先介绍一种软件定义的车辆边缘计算(SD-VEC)架构,其中控制器不仅可以指导车辆的任务卸载策略,而且可以确定边缘云资源分配策略。为了获得最佳策略,我们在边缘云选择和资源分配上制定了一个问题,以使任务在预定时限内成功完成的概率最大化。由于提出的问题是众所周知的NP难题,因此我们设计了一种移动感知贪婪算法(MGA),该算法确定分配给每辆车的边缘云资源的数量。跟踪驱动的仿真结果表明,与传统算法相比,MGA提供了近乎最佳的性能并提高了成功执行任务的概率。

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